• Title of article

    Mutual Information Is Copula Entropy

  • Author/Authors

    Jian, MA Tsinghua University - Department of Computer Science and Technology, State Key Laboratory on Intelligent Technology and Systems, China , Zengqi, SUN Tsinghua University - Department of Computer Science and Technology, State Key Laboratory on Intelligent Technology and Systems, China

  • From page
    51
  • To page
    54
  • Abstract
    Mutual information (MI) is a basic concept in information theory. Therefore, estimates of the MI are fundamentally important in most information theory applications. This paper provides a new way of understanding and estimating the MI using the copula function. First, the entropy of the copula, named the copula entropy, is defined as a measure of the dependence uncertainty represented by the copula function and then the MI is shown to be equivalent to the negative copula entropy. With this equivalence, the MI can be estimated by first estimating the empirical copula and then estimating the entropy of the empirical copula. Thus, the MI estimate is an estimation of the entropy, which reduces the complexity and computational requirements. Tests show that the method is more effective than the traditional method.
  • Keywords
    copula entropy , mutual information , estimation , empirical copula
  • Journal title
    Tsinghua Science and Technology
  • Journal title
    Tsinghua Science and Technology
  • Record number

    2535359